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A Multiscalar Approach for Identifying Clusters and Segregation Patterns That Avoids the Modifiable Areal Unit Problem

机译:识别群集和隔离模式的多档次方法,避免可修改的区域问题

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One problem encountered in analyses based on data aggregated into areal units is that the results can depend on the delineation of the areal units. Therefore, a particular aggregation at a specific scale can yield an arbitrary result that is valid only for that specific delineation. This problem is called the modifiable areal unit problem (MAUP), and it has previously been shown to create issues in analyses of clusters and segregation patterns. Many analyses of segregation and clustering use the ratio or difference between a value for an areal unit and the corresponding value for a larger area of reference. We argue that the results of such an analysis can also be rendered arbitrary if one does not examine the effects of varying the geographical extent of the area of reference to test whether the analysis results are valid for more than a specific areal delineation. We call this the part of the MAUP that is related to the area of reference. In this article, we present and demonstrate a multiscalar approach for studying segregation and clustering that avoids the MAUP, including the part of the problem related to the area of reference. The proposed methods rely on multiscalar aggregation of the k nearest neighbors of a location in a statistical comparison with a larger area of reference consisting of the K nearest neighbors. The methods are exemplified by identifying clusters and segregation patterns of the Hispanic population in the contiguous United States.
机译:基于汇总到区域单位的数据遇到的分析中遇到的一个问题是结果可以取决于区域单位的描绘。因此,特定规模的特定聚合可以产生仅为该特定描绘而有效的任意结果。此问题称为可修改的区域单位问题(MAUP),此前已被证明可以在分析群集和分离模式中创建问题。孤立和聚类的许多分析使用由区域单元的值与较大参考区域的值与相应值之间的比率或差异。我们认为这种分析的结果也可以是任意的,如果一个人没有检查改变参考领域的地理范围的影响,以测试分析结果是否有效,以多于特定的区域划分。我们称之为与参考领域有关的MAUP的一部分。在本文中,我们展示并展示了一种用于研究避免MAUP的分离和聚类的多音士方法,包括与参考领域相关的问题的一部分。所提出的方法依赖于统计比较中的K最近邻居的Multiscalar聚集在统计比较中,与较大的邻居组成的较大参考。该方法通过识别在连续的美国中西班牙裔人口的簇和分离模式而举例说明。

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